Transfer Learning for Detection of Combustion Instability Via Symbolic Time-Series Analysis

被引:5
|
作者
Bhattacharya, Chandrachur [1 ,2 ]
Ray, Asok [3 ,4 ]
机构
[1] Penn State Univ, Dept Mech, University Pk, PA 16802 USA
[2] Penn State Univ, Dept Elect Engn, University Pk, PA 16802 USA
[3] Penn State Univ, Dept Mech Engn, University Pk, PA 16802 USA
[4] Penn State Univ, Dept Math, University Pk, PA 16802 USA
来源
JOURNAL OF DYNAMIC SYSTEMS MEASUREMENT AND CONTROL-TRANSACTIONS OF THE ASME | 2021年 / 143卷 / 10期
关键词
transfer learning; symbolic time-series analysis; neural networks; combustion systems; AUTOMATA; MODEL;
D O I
10.1115/1.4050847
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Transfer learning (TL) is a machine learning (ML) tool where the knowledge, acquired from a source domain, is "transferred" to perform a task in a target domain that has (to some extent) a similar setting. The underlying concept does not require the ML method to analyze a new problem from the beginning, and thereby both the learning time and the amount of required target-domain data are reduced for training. An example is the occurrence of thermoacoustic instability (TAI) in combustors, which may cause pressure oscillations, possibly leading to flame extinction as well as undesirable vibrations in the mechanical structures. In this situation, it is difficult to collect useful data from industrial combustion systems, due to the transient nature of TAI phenomena. A feasible solution is the usage of prototypes or emulators, like a Rijke tube, to produce largely similar phenomena. This paper proposes symbolic time-series analysis (STSA)-based TL, where the key idea is to develop a capability of discrimination between stable and unstable operations of a combustor, based on the time-series of pressure oscillations from a data source that contains sufficient information, even if it is not the target regime, and then transfer the learnt models to the target regime. The proposed STSA-based pattern classifier is trained on a previously validated numerical model of a Rijke-tube apparatus. The knowledge of this trained classifier is transferred to classify similar operational regimes in: (i) an experimental Rijke-tube apparatus and (ii) an experimental combustion system apparatus. Results of the proposed TL have been validated by comparison with those of two shallow neural networks (NNs)-based TL and another NN having an additional long short-term memory (LSTM) layer, which serve as benchmarks, in terms of classification accuracy and computational complexity.
引用
收藏
页数:11
相关论文
共 50 条
  • [1] Symbolic time-series analysis for anomaly detection in mechanical
    Khatkhate, Amol
    Ray, Asok
    Keller, Eric
    Gupta, Shalabh
    Chin, Shin C.
    IEEE-ASME TRANSACTIONS ON MECHATRONICS, 2006, 11 (04) : 439 - 447
  • [2] Online detection of impending instability in a combustion system using tools from symbolic time series analysis
    Unni, Vishnu R.
    Mukhopadhyay, Achintya
    Sujith, R. I.
    INTERNATIONAL JOURNAL OF SPRAY AND COMBUSTION DYNAMICS, 2015, 7 (03) : 243 - 255
  • [3] On parameter estimation of chaotic systems via symbolic time-series analysis
    Piccardi, Carlo
    CHAOS, 2006, 16 (04)
  • [4] Spacecraft Time-Series Anomaly Detection Using Transfer Learning
    Baireddy, Sriram
    Desai, Sundip R.
    Mathieson, James L.
    Foster, Richard H.
    Chan, Moses W.
    Comer, Mary L.
    Delp, Edward J.
    2021 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION WORKSHOPS, CVPRW 2021, 2021, : 1951 - 1960
  • [5] MULTIVARIATE TIME-SERIES ANALYSIS VIA MANIFOLD LEARNING
    Rodrigues, Pedro Luiz Coelho
    Congedo, Marco
    Jutten, Christian
    2018 IEEE STATISTICAL SIGNAL PROCESSING WORKSHOP (SSP), 2018, : 573 - 577
  • [6] Rumor Detection on Time-Series of Tweets via Deep Learning
    Kotteti, Chandra Mouli Madhav
    Dong, Xishuang
    Qian, Lijun
    MILCOM 2019 - 2019 IEEE MILITARY COMMUNICATIONS CONFERENCE (MILCOM), 2019,
  • [7] Symbolic time-series analysis of neural data
    Lesher, S
    Guan, L
    Cohen, AH
    NEUROCOMPUTING, 2000, 32 (32-33) : 1073 - 1081
  • [8] Sequential hypothesis tests for streaming data via symbolic time-series analysis
    Virani, Nurali
    Jha, Devesh K.
    Ray, Asok
    Phoha, Shashi
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2019, 81 : 234 - 246
  • [9] Investigation of combustion instability in a swirl-stabilized combustor using symbolic time series analysis
    Ramanan, Vikram
    Chakravarthy, S. R.
    Sarkar, Soumalya
    Ray, Ashok
    PROCEEDINGS OF THE ASME GAS TURBINE INDIA CONFERENCE, 2014, 2014,
  • [10] Online detection of fatigue failure via symbolic time series analysis
    Gupta, S
    Ray, A
    Keller, E
    ACC: PROCEEDINGS OF THE 2005 AMERICAN CONTROL CONFERENCE, VOLS 1-7, 2005, : 3309 - 3314